Improving IoT Security using Lightweight Based Deep Learning Protection Model

Q3 Environmental Science
Mahmood Subhy Mahmood, Najla Badie Al Dabagh
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引用次数: 3

Abstract

The Internet of Things (IoT) has recently become an essential ingredient of human life. The main critical challenges that confront IoT are security and protection. Several methods have been developed to protect the IoT; among these methods is Intrusion Detection System (IDS) Deep Learning-based. On the other hand, these types of IDS have a complex operation that takes a long time when applied on IoT devices and is inconvenient for a massive system that includes many connected devices. Thus, this paper suggested a Lightweight Intrusion Detection System (LIDS) IoT model that depends on deep learning using a Multi-Layer Perceptron (MLP) network. LIDS has the following characteristics lightweight, high accuracy, high speed in detection, and deals with a few features in MQTT protocol. The MQTTset dataset was used in training, validating, and testing the proposed model to investigate the performance of the proposed LIDS. The achieved performance ratios for the proposed LIDS, as measured by accuracy and F1-score. The experiment results showed that for the balanced MQTTset dataset, the number of obtained features was 15 with accuracy (95.06) and F1_score (95.31). Also, for the imbalanced MQTTset, the number of obtained features was 12 with accuracy (96.97) and F1-score (98.24). The obtained results have shown the deep learning efficiency role in improving the accuracy of an intrusion detection model by approximately 3.5% compared to other methods in the literature. In addition, the proposed methods reduced the number of features by around 50% of the total number of features, leading to a LIDS operating in a constrained environment.
使用基于轻量级的深度学习保护模型提高物联网安全性
物联网(IoT)最近已成为人类生活的重要组成部分。物联网面临的主要关键挑战是安全和保护。已经开发了几种方法来保护物联网;其中基于深度学习的入侵检测系统(IDS)就是其中之一。另一方面,这些类型的IDS具有复杂的操作,在物联网设备上应用时需要很长时间,并且对于包括许多连接设备的大型系统来说是不方便的。因此,本文提出了一种基于多层感知器(MLP)网络的深度学习的轻量级入侵检测系统(LIDS)物联网模型。LIDS具有以下特点:重量轻、精度高、检测速度快,并处理了MQTT协议中的一些特性。MQTTset数据集用于训练、验证和测试所提出的模型,以研究所提出的LIDS的性能。通过精度和F1分数测量的所提出的LIDS实现的性能比率。实验结果表明,对于平衡的MQTset数据集,获得的特征数量为15个,准确率为95.06,F1_score为95.31,所获得的特征数量为12个,准确度(96.97),F1得分(98.24)。所获得的结果表明,与文献中的其他方法相比,深度学习效率在将入侵检测模型的准确度提高约3.5%方面发挥了作用。此外,所提出的方法将特征数量减少了特征总数的50%左右,导致LIDS在受限环境中运行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
56
审稿时长
8 weeks
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